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Bibliographic Details
Main Authors: Govender, Saarisha, Sinayskiy, Ilya
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.23084
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author Govender, Saarisha
Sinayskiy, Ilya
author_facet Govender, Saarisha
Sinayskiy, Ilya
contents Generalisation refers to the ability of a machine learning (ML) model to successfully apply patterns learned from training data to new, unseen data. Quantum devices in the current Noisy Intermediate-Scale Quantum (NISQ) era are inherently affected by noise, which degrades generalisation performance. In this work, we derive upper and lower margin-based generalisation bounds for Quantum Kernel-Assisted Support Vector Machines (QSVMs) under local depolarising noise. These theoretical bounds characterise noise-induced margin decay and are validated via numerical simulations across multiple datasets, as well as experiments on real quantum hardware. We further justify the focus on margin-based measures by empirically establishing margins as a reliable indicator of generalisation performance for QSVMs. Additionally, we motivate the study of local depolarising noise by presenting empirical evidence demonstrating that the commonly used global depolarising noise model is overly optimistic and fails to accurately capture the degradation of generalisation performance observed in the NISQ era.
format Preprint
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institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Margin-Based Generalisation Bounds for Quantum Kernel Methods under Local Depolarising Noise
Govender, Saarisha
Sinayskiy, Ilya
Quantum Physics
Generalisation refers to the ability of a machine learning (ML) model to successfully apply patterns learned from training data to new, unseen data. Quantum devices in the current Noisy Intermediate-Scale Quantum (NISQ) era are inherently affected by noise, which degrades generalisation performance. In this work, we derive upper and lower margin-based generalisation bounds for Quantum Kernel-Assisted Support Vector Machines (QSVMs) under local depolarising noise. These theoretical bounds characterise noise-induced margin decay and are validated via numerical simulations across multiple datasets, as well as experiments on real quantum hardware. We further justify the focus on margin-based measures by empirically establishing margins as a reliable indicator of generalisation performance for QSVMs. Additionally, we motivate the study of local depolarising noise by presenting empirical evidence demonstrating that the commonly used global depolarising noise model is overly optimistic and fails to accurately capture the degradation of generalisation performance observed in the NISQ era.
title Margin-Based Generalisation Bounds for Quantum Kernel Methods under Local Depolarising Noise
topic Quantum Physics
url https://arxiv.org/abs/2601.23084